Publication | Open Access
Content Modeling Using Latent Permutations
44
Citations
52
References
2009
Year
EngineeringText MiningAutomatic SummarizationNatural Language ProcessingComputational Social ScienceInformation RetrievalData ScienceComputational LinguisticsDiscourse AnalysisLanguage StudiesContent AnalysisDocument SegmentationDocument ClusteringKnowledge DiscoveryGeneralized Mallows ModelLatent PermutationsComputer ScienceTopic SelectionDiscourse StructureTopic ModelContent RepresentationText ProcessingLinguisticsContent Processing
We present a novel Bayesian topic model for learning discourse-level document structure. Our model leverages insights from discourse theory to constrain latent topic assignments in a way that reflects the underlying organization of document topics. We propose a global model in which both topic selection and ordering are biased to be similar across a collection of related documents. We show that this space of orderings can be effectively represented using a distribution over permutations called the Generalized Mallows Model. We apply our method to three complementary discourse-level tasks: cross-document alignment, document segmentation, and information ordering. Our experiments show that incorporating our permutation-based model in these applications yields substantial improvements in performance over previously proposed methods.
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